Applications of artificial intelligence in emergency and critical care diagnostics: a systematic review and meta-analysis.

IF 3 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Frontiers in Artificial Intelligence Pub Date : 2024-10-04 eCollection Date: 2024-01-01 DOI:10.3389/frai.2024.1422551
Jithin K Sreedharan, Fred Saleh, Abdullah Alqahtani, Ibrahim Ahmed Albalawi, Gokul Krishna Gopalakrishnan, Hadi Abdullah Alahmed, Basem Ahmed Alsultan, Dhafer Mana Alalharith, Musallam Alnasser, Ayedh Dafer Alahmari, Manjush Karthika
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Abstract

Introduction: Artificial intelligence has come to be the highlight in almost all fields of science. It uses various models and algorithms to detect patterns and specific findings to diagnose a disease with utmost accuracy. With the increasing need for accurate and precise diagnosis of disease, employing artificial intelligence models and concepts in healthcare setup can be beneficial.

Methodology: The search engines and databases employed in this study are PubMed, ScienceDirect and Medline. Studies published between 1st January 2013 to 1st February 2023 were included in this analysis. The selected articles were screened preliminarily using the Rayyan web tool, after which investigators screened the selected articles individually. The risk of bias for the selected studies was assessed using QUADAS-2 tool specially designed to test bias among studies related to diagnostic test reviews.

Results: In this review, 17 studies were included from a total of 12,173 studies. These studies were analysed for their sensitivity, accuracy, positive predictive value, specificity and negative predictive value in diagnosing barrette's neoplasia, cardiac arrest, esophageal adenocarcinoma, sepsis and gastrointestinal stromal tumors. All the studies reported heterogeneity with p-value <0.05 at confidence interval 95%.

Conclusion: The existing evidential data suggests that artificial intelligence can be highly helpful in the field of diagnosis providing maximum precision and early detection. This helps to prevent disease progression and also helps to provide treatment at the earliest. Employing artificial intelligence in diagnosis will define the advancement of health care environment and also be beneficial in every aspect concerned with treatment to illnesses.

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人工智能在急诊和重症监护诊断中的应用:系统回顾和荟萃分析。
导言:人工智能已成为几乎所有科学领域的亮点。它使用各种模型和算法来检测模式和特定结果,从而最准确地诊断疾病。随着人们对准确诊断疾病的需求日益增长,在医疗机构中采用人工智能模型和概念将大有裨益:本研究采用的搜索引擎和数据库包括 PubMed、ScienceDirect 和 Medline。本分析包括 2013 年 1 月 1 日至 2023 年 2 月 1 日期间发表的研究。研究人员使用 Rayyan 网络工具对所选文章进行了初步筛选,然后对所选文章进行了单独筛选。所选研究的偏倚风险采用 QUADAS-2 工具进行评估,该工具专门用于检测诊断测试综述相关研究的偏倚:本综述共纳入了 12,173 项研究中的 17 项研究。对这些研究在诊断巴雷特瘤、心脏骤停、食管腺癌、败血症和胃肠道间质瘤方面的敏感性、准确性、阳性预测值、特异性和阴性预测值进行了分析。所有研究都报告了异质性,P 值为 结论:现有的证据数据表明,人工智能可以在诊断领域提供极大的帮助,最大限度地提高精确度并实现早期检测。这有助于防止疾病恶化,也有助于尽早提供治疗。在诊断中使用人工智能将决定医疗环境的进步,同时也有利于疾病治疗的各个方面。
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CiteScore
6.10
自引率
2.50%
发文量
272
审稿时长
13 weeks
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